Assessing and Improving Automated Viewpoint Planning for Static Laser Scanning Using Optimization Methods

F. Noichl, Maximilian Stuecke, Clemens Thielen, André Borrmann
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Abstract

Abstract. The preparation of laser scanning missions is important for efficiency and data quality. Furthermore, it is a prerequisite for automated data acquisition, which has numerous applications in the built environment, including autonomous inspections and monitoring of construction progress and quality criteria. The scene and potential scanning locations can be discretized to facilitate the analysis of visibility and quality aspects. The remaining mathematical problem to generate an economic scan strategy is the Viewpoint Planning Problem (VPP), which asks for a minimum number of scanning locations within the given scene to cover the scene under pre-defined requirements. Solutions for this problem are most commonly found using heuristics. While these efficient methods scale well, they cannot generally return globally optimal solutions. This paper investigates the VPP based on a problem description that considers quality-constrained visibility in 3D scenes and suitable overlaps between individual viewpoints for targetless registration of acquired point clouds. The methodology includes the introduction of a preprocessing method designed to simplify the input data without losing information about the problem. The paper details various solution methods for the VPP, encompassing conventional heuristics and a mixed-integer linear programming formulation, which is solved using Benders decomposition. Experiments are carried out on two case study datasets, varying in specifications and sizes, to evaluate these methods. The results show the actual quality of the obtained solutions and their deviation from optimality (in terms of the estimated optimality gap) for instances where exact solutions can not be achieved.
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利用优化方法评估和改进静态激光扫描的自动视点规划
摘要激光扫描任务的准备工作对于提高效率和数据质量非常重要。此外,它还是自动数据采集的先决条件,在建筑环境中应用广泛,包括自主检查和监控施工进度和质量标准。场景和潜在扫描位置可以离散化,以便于对可见度和质量方面进行分析。生成经济扫描策略的其余数学问题是视点规划问题(VPP),该问题要求在给定场景内找到最少数量的扫描位置,以便在预定要求下覆盖整个场景。该问题的解决方案通常采用启发式方法。虽然这些高效的方法具有良好的扩展性,但一般无法返回全局最优解。本文研究了基于问题描述的 VPP,该问题描述考虑了三维场景中质量受限的可见度和单个视点之间的适当重叠,以实现获取的点云的无目标注册。该方法包括引入一种预处理方法,旨在简化输入数据而不丢失问题信息。论文详细介绍了 VPP 的各种求解方法,包括传统的启发式方法和混合整数线性规划公式,该公式使用本德斯分解法求解。为了对这些方法进行评估,本文在两个规格和规模各不相同的案例研究数据集上进行了实验。结果显示了所获解决方案的实际质量,以及在无法获得精确解决方案的情况下,它们与最优性的偏差(以估计的最优性差距表示)。
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